跨年龄面部比较调查

Sanskruti D. Ginoya, H. Prajapati, V. Dabhi
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引用次数: 0

摘要

跨年龄面部比较由于其处理衰老过程中面部变化的能力而成为计算机视觉和生物识别领域的热门研究课题。该问题在寻人、罪犯识别、政府文件验证、图像匹配、图像检索等方面有广泛的应用。传统上,研究者采用隐因子分析、最大熵特征描述符和跨年龄参考编码等不同的模型来解决这一问题。这些模型需要使用局部二值模式和定向梯度直方图进行特征提取。另一方面,基于深度学习的技术不需要特征提取,并被广泛用于面部分析。本文着重对跨年龄人脸识别/检索和跨年龄人脸验证的最新研究进行了广泛的文献综述。本文的主要贡献包括:(1)分析了各种Face比较挑战及其研究人员给出的解决方案;(2)分析了用于解决年龄不变量问题的各种传统/深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey on Cross-Age Face Comparison
Cross-Age Face Comparison has become a popular research topic in computer vision and biometric because of its ability to deal with facial changes that occur during the aging process. This problem has many applications including finding a missing person, identifying criminals, government document verification, image matching, image retrieval, etc. Traditionally, different models such as Hidden Factor Analysis, Maximum Entropy Feature Descriptor, and Cross-Age Reference Coding were used by researcher to solve the problem. These models need feature extraction using Local Binary Pattern and Histogram of Oriented Gradient. On the other hand deep learning based techniques do not require feature extraction and are being widely used for facial analysis. This paper focuses on the broad literature survey of state-of-the-art researches attempting Cross-Age Face Recognition/Retrieval and Cross-Age Face verification. Major contributions of the paper include (1) analysis of various Face comparison challenges with their solutions given by researchers and (2) analysis of various traditional/deep learning based models used to solve the Age invariant problem.
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